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HIGH-ORDER TOTAL VARIATION REGULARIZATION APPROACH FOR AXIALLY SYMMETRIC OBJECT TOMOGRAPHY FROM A SINGLE RADIOGRAPH

机译:一次单轴成像的轴对称目标层析成像的高阶总变化正则化方法

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摘要

In this paper, we consider tomographic reconstruction for axially symmetric objects from a single radiograph formed by fan-beam X-rays. All contemporary methods are based on the assumption that the density is piece-wise constant or linear. From a practical viewpoint, this is quite a restrictive approximation. The method we propose is based on high-order total variation regularization. Its main advantage is to reduce the staircase effect while keeping sharp edges and enable the recovery of smoothly varying regions. The optimization problem is solved using the augmented Lagrangian method which has been recently applied in image processing. Furthermore, we use a one-dimensional (ID) technique for fan-beam X-rays to approximate 2D tomographic reconstruction for cone-beam X-rays. For the 2D problem, we treat the cone beam as fan beam located at parallel planes perpendicular to the symmetric axis. Then the density of the whole object is recovered layer by layer. Numerical results in ID show that the proposed method has improved the preservation of edge location and the accuracy of the density level when compared with several other contemporary methods. The 2D numerical tests show that cylindrical symmetric objects can be recovered rather accurately by our high-order regularization model.
机译:在本文中,我们考虑从由扇形束X射线形成的单个X射线照片上对轴对称对象进行断层图像重建。所有当代方法都基于密度是分段恒定或线性的假设。从实践的角度来看,这是一个限制性的近似。我们提出的方法基于高阶总变化量正则化。它的主要优点是减少楼梯效应,同时保持锋利的边缘,并能够恢复平滑变化的区域。使用最近在图像处理中应用的增强拉格朗日方法解决了优化问题。此外,我们对扇形束X射线使用一维(ID)技术来近似对锥束X射线进行二维层析成像重建。对于2D问题,我们将锥束视为位于垂直于对称轴的平行平面上的扇形束。然后,整个对象的密度逐层恢复。 ID中的数值结果表明,与其他几种现代方法相比,该方法改善了边缘位置的保留和密度水平的准确性。二维数值测试表明,通过我们的高阶正则化模型可以相当精确地恢复圆柱对称对象。

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